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A novel real-time driving fatigue detection system based on wireless dry EEG

机译:基于无线干式脑电图的新型实时驾驶疲劳检测系统

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摘要

Development of techniques for detection of mental fatigue has varied applications in areas where sustaining attention is of critical importance like security and transportation. The objective of this study is to develop a novel real-time driving fatigue detection methodology based on dry Electroencephalographic (EEG) signals. The study has employed two methods in the online detection of mental fatigue: power spectrum density (PSD) and sample entropy (SE). The wavelet packets transform (WPT) method was utilized to obtain the θ (4–7 Hz), α (8–12 Hz) and β (13–30 Hz) bands frequency components for calculating corresponding PSD of the selected channels. In order to improve the fatigue detection performance, the system was individually calibrated for each subject in terms of fatigue-sensitive channels selection. Two fatigue-related indexes: (θ + α)/β and θ/β were computed and then fused into an integrated metric to predict the degree of driving fatigue. In the case of SE extraction, the mean of SE averaged across two EEG channels (‘O1h’ and ‘O2h’) was used for fatigue detection. Ten healthy subjects participated in our study and each of them performed two sessions of simulated driving. In each session, subjects were required to drive simulated car for 90 min without any break. The results demonstrate that our proposed methods are effective for fatigue detection. The prediction of fatigue is consistent with the observation of reaction time that was recorded during simulated driving, which is considered as an objective behavioral measure.
机译:用于检测精神疲劳的技术的开发在诸如安全和交通运输等持续关注至关重要的领域中有多种应用。这项研究的目的是开发一种基于干式脑电图(EEG)信号的新型实时驾驶疲劳检测方法。该研究采用了两种方法在线检测精神疲劳:功率谱密度(PSD)和样本熵(SE)。利用小波包变换(WPT)方法获得θ(4-7 Hz),α(8-12 Hz)和β(13-30 Hz)频带频率分量,以计算所选通道的相应PSD。为了提高疲劳检测性能,系统针对疲劳敏感的通道选择对每个对象分别进行了校准。计算了两个与疲劳有关的指标:(θ+α)/β和θ/β,然后将其融合到一个综合指标中以预测驾驶疲劳程度。对于SE提取,使用两个EEG通道(“ O1h”和“ O2h”)的SE平均值进行疲劳检测。十名健康受试者参加了我们的研究,他们每人进行了两节模拟驾驶。在每个环节中,受试者必须驾驶模拟汽车90分钟而不得休息。结果表明,我们提出的方法对于疲劳检测是有效的。疲劳的预测与在模拟驾驶过程中记录的反应时间的观察结果一致,这被认为是一种客观的行为量度。

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